Title
Top-k Reliability Search on Uncertain Graphs
Abstract
Uncertain graphs have been widely used to represent graph data with inherent uncertainty in structures. Reliability search is a fundamental problem in uncertain graph analytics. This paper studies a new problem, the top-k reliability search problem on uncertain graphs, that is, finding k vertices v with the highest reliabilities of connections from a source vertex s to v. Note that the existing algorithm for the threshold-based reliability search problem is inefficient for the top-k reliability search problem. We propose a new algorithm to efficiently solve the top-k reliability search problem. The algorithm adopts two important techniques, namely the BFS sharing technique and the offline sampling technique. The BFS sharing technique exploits overlaps among different sampled possible worlds of the input uncertain graph and performs a single BFS on all possible worlds simultaneously. The offline sampling technique samples possible worlds offline and stored them using a compact structure. The algorithm also takes advantages of bit vectors and bitwise operations to improve efficiency. Moreover, we generalize the top-k reliability search problem to the multi-source case and show that the multi-source case of the problem can be equivalently converted to the single-source case of the problem. Extensive experiments carried out on both real and synthetic datasets verify that the optimized algorithm outperforms the baselines by 1 -- 2 orders of magnitude in execution time while achieving comparable accuracy. Meanwhile, the optimized algorithm exhibits linear scalability with respect to the size of the input uncertain graph.
Year
DOI
Venue
2015
10.1109/ICDM.2015.64
IEEE International Conference on DataMining
Keywords
Field
DocType
uncertain graph analytics,top-k reliability search problem,source vertex,threshold-based reliability search problem,BFS sharing technique,input uncertain graph,offline sampling technique samples,bit vectors,bitwise operations,multisource case,single-source case,synthetic datasets,real datasets,linear scalability,graph data representation
Data mining,Computer science,Theoretical computer science,Artificial intelligence,Bidirectional search,Search problem,Approximation algorithm,Vertex (geometry),Bitwise operation,Sampling (statistics),Machine learning,Best-first search,Scalability
Conference
ISSN
Citations 
PageRank 
1550-4786
4
0.39
References 
Authors
16
3
Name
Order
Citations
PageRank
Rong Zhu1122.81
Zhaonian Zou233115.78
Jianzhong Li33196304.46